Data-based stochastic modeling reveals sources of activity bursts in single-cell TGF-β signaling

PLoS Comput Biol. 2022 Jun 27;18(6):e1010266. doi: 10.1371/journal.pcbi.1010266. eCollection 2022 Jun.

Abstract

Cells sense their surrounding by employing intracellular signaling pathways that transmit hormonal signals from the cell membrane to the nucleus. TGF-β/SMAD signaling encodes various cell fates, controls tissue homeostasis and is deregulated in diseases such as cancer. The pathway shows strong heterogeneity at the single-cell level, but quantitative insights into mechanisms underlying fluctuations at various time scales are still missing, partly due to inefficiency in the calibration of stochastic models that mechanistically describe signaling processes. In this work we analyze single-cell TGF-β/SMAD signaling and show that it exhibits temporal stochastic bursts which are dose-dependent and whose number and magnitude correlate with cell migration. We propose a stochastic modeling approach to mechanistically describe these pathway fluctuations with high computational efficiency. Employing high-order numerical integration and fitting to burst statistics we enable efficient quantitative parameter estimation and discriminate models that assume noise in different reactions at the receptor level. This modeling approach suggests that stochasticity in the internalization of TGF-β receptors into endosomes plays a key role in the observed temporal bursting. Further, the model predicts the single-cell dynamics of TGF-β/SMAD signaling in untested conditions, e.g., successfully reflects memory effects of signaling noise and cellular sensitivity towards repeated stimulation. Taken together, our computational framework based on burst analysis, noise modeling and path computation scheme is a suitable tool for the data-based modeling of complex signaling pathways, capable of identifying the source of temporal noise.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Cell Nucleus / metabolism
  • Endosomes / metabolism
  • Receptors, Transforming Growth Factor beta*
  • Signal Transduction* / physiology
  • Smad Proteins / metabolism
  • Transforming Growth Factor beta / metabolism

Substances

  • Receptors, Transforming Growth Factor beta
  • Smad Proteins
  • Transforming Growth Factor beta

Grants and funding

N.K. was supported by the JSPS Postdoctoral Fellowships for Research in Japan (Standard, ID P19701). The work of M.L.-M. and L.-M. B. was partially supported by the German Science Foundation under the SFB/TRR 146 "Multiscale Simulation Methods for Soft Matter Systems", Project C5 as well as by the Mainz Institute of Multiscale Modeling. M.L.-M. gratefully acknowledges the Gutenberg Research College for supporting her research. This work was supported by DFG funding to A.L. (grant LO 1634/7-1) and S.L. (LE 3473/4-1). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.